On posterior propriety for the Student-t linear regression model under Jeffreys priors
classification
📊 stat.ME
math.STstat.APstat.TH
keywords
posteriorregressioninferencejeffreyslinearmodelpriorspropriety
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Regression models with fat-tailed error terms are an increasingly popular choice to obtain more robust inference to the presence of outlying observations. This article focuses on Bayesian inference for the Student-$t$ linear regression model under objective priors that are based on the Jeffreys rule. Posterior propriety results presented in Fonseca et al. (2008) are revisited and corrected. In particular, it is shown that the standard Jeffreys-rule prior precludes the existence of a proper posterior distribution.
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